Determining 1D fast-ion velocity distribution functions from ion cyclotron emission data using deep neural networks
Bo Simmendefeldt Schmidt(Technical University of Denmark), H. Järleblad(Technical University of Denmark), D. Moseev(Institute for Atomic and Molecular Physics), Bernard Reman(Laboratoire Plasma et Conversion d'Energie), M. Salewski(Technical University of Denmark), R. O. Dendy(Culham Centre for Fusion Energy), M. Baquero-Ruiz(École Polytechnique Fédérale de Lausanne), A. Fasoli(École Polytechnique Fédérale de Lausanne), R. Ochoukov(Max Planck Institute for Plasma Physics)
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